Medical applications have driven many areas of engineering to optimize diagnostic capabilities and convenience. In the near future, wireless body area networks (WBANs) are expected to have widespread impact in medicine. To achieve this impact, however, significant advances in research are needed to cope with the changes of the human body's state, which make coherent communications difficult or even impossible. In this paper, we consider a realistic noncoherent WBAN system model where transmissions and receptions are conducted without any channel state information due to the fast-varying channels of the human body. Using distributed reception, we propose several symbol detection approaches where on-off keying (OOK) modulation is exploited, among which a supervised-learning-based approach is developed to overcome the noncoherent system issue. Through simulation results, we compare and verify the performance of the proposed techniques for noncoherent WBANs with OOK transmissions. We show that the well-defined detection techniques with a supervised-learning-based approach enable robust communications for noncoherent WBAN systems.
翻译:医疗应用促使许多工程领域优化诊断能力和方便性,在不久的将来,无线机体区域网络(WBANs)预计将对医学产生广泛影响。然而,为了实现这一影响,需要大力推进研究,以应对人体状态的变化,这种变化使连贯的通信变得困难甚至不可能。在本文件中,我们认为一种现实的、不连贯的WBAN系统模式,即由于人体快速变化的渠道,在没有任何频道状态信息的情况下进行传输和接收。我们利用分布式接收,提出了几种符号检测方法,在使用离线键(OOK)调节时加以利用,其中开发了一种以监督为基础的学习方法,以克服不连贯的系统问题。通过模拟结果,我们比较并核实了与OOK传输不相连接的WBANs的拟议技术的性能。我们表明,使用有监督的学习方法的明确界定的检测技术能够使非相联式WBAN系统进行稳健的通信。